Literature DB >> 31492410

A Survey of Deep-Learning Applications in Ultrasound: Artificial Intelligence-Powered Ultrasound for Improving Clinical Workflow.

Zeynettin Akkus1, Jason Cai2, Arunnit Boonrod3, Atefeh Zeinoddini2, Alexander D Weston2, Kenneth A Philbrick2, Bradley J Erickson2.   

Abstract

Ultrasound is the most commonly used imaging modality in clinical practice because it is a nonionizing, low-cost, and portable point-of-care imaging tool that provides real-time images. Artificial intelligence (AI)-powered ultrasound is becoming more mature and getting closer to routine clinical applications in recent times because of an increased need for efficient and objective acquisition and evaluation of ultrasound images. Because ultrasound images involve operator-, patient-, and scanner-dependent variations, the adaptation of classical machine learning methods to clinical applications becomes challenging. With their self-learning ability, deep-learning (DL) methods are able to harness exponentially growing graphics processing unit computing power to identify abstract and complex imaging features. This has given rise to tremendous opportunities such as providing robust and generalizable AI models for improving image acquisition, real-time assessment of image quality, objective diagnosis and detection of diseases, and optimizing ultrasound clinical workflow. In this report, the authors review current DL approaches and research directions in rapidly advancing ultrasound technology and present their outlook on future directions and trends for DL techniques to further improve diagnosis, reduce health care cost, and optimize ultrasound clinical workflow.
Copyright © 2019 American College of Radiology. Published by Elsevier Inc. All rights reserved.

Entities:  

Keywords:  Artificial intelligence in ultrasound; breast lesion; deep learning in ultrasound; liver lesion; thyroid nodule

Mesh:

Year:  2019        PMID: 31492410     DOI: 10.1016/j.jacr.2019.06.004

Source DB:  PubMed          Journal:  J Am Coll Radiol        ISSN: 1546-1440            Impact factor:   5.532


  36 in total

1.  The value of color Doppler ultrasound in the diagnosis of thyroid nodules: a systematic review and meta-analysis.

Authors:  Danbo Zhao; Yi Jing; Xiaoyi Lin; Bixia Zhang
Journal:  Gland Surg       Date:  2021-12

Review 2.  Machine Learning and Deep Learning Techniques for Optic Disc and Cup Segmentation - A Review.

Authors:  Mohammed Alawad; Abdulrhman Aljouie; Suhailah Alamri; Mansour Alghamdi; Balsam Alabdulkader; Norah Alkanhal; Ahmed Almazroa
Journal:  Clin Ophthalmol       Date:  2022-03-11

Review 3.  The Lancet Commission on diagnostics: transforming access to diagnostics.

Authors:  Kenneth A Fleming; Susan Horton; Michael L Wilson; Rifat Atun; Kristen DeStigter; John Flanigan; Shahin Sayed; Pierrick Adam; Bertha Aguilar; Savvas Andronikou; Catharina Boehme; William Cherniak; Annie Ny Cheung; Bernice Dahn; Lluis Donoso-Bach; Tania Douglas; Patricia Garcia; Sarwat Hussain; Hari S Iyer; Mikashmi Kohli; Alain B Labrique; Lai-Meng Looi; John G Meara; John Nkengasong; Madhukar Pai; Kara-Lee Pool; Kaushik Ramaiya; Lee Schroeder; Devanshi Shah; Richard Sullivan; Bien-Soo Tan; Kamini Walia
Journal:  Lancet       Date:  2021-10-06       Impact factor: 79.321

4.  Toward deep observation: A systematic survey on artificial intelligence techniques to monitor fetus via ultrasound images.

Authors:  Mahmood Alzubaidi; Marco Agus; Khalid Alyafei; Khaled A Althelaya; Uzair Shah; Alaa Abd-Alrazaq; Mohammed Anbar; Michel Makhlouf; Mowafa Househ
Journal:  iScience       Date:  2022-07-03

Review 5.  Updates in Artificial Intelligence for Breast Imaging.

Authors:  Manisha Bahl
Journal:  Semin Roentgenol       Date:  2021-12-31       Impact factor: 0.709

Review 6.  Artificial Intelligence: A Primer for Breast Imaging Radiologists.

Authors:  Manisha Bahl
Journal:  J Breast Imaging       Date:  2020-06-19

7.  Fully Automated Segmentation of Head CT Neuroanatomy Using Deep Learning.

Authors:  Jason C Cai; Zeynettin Akkus; Kenneth A Philbrick; Arunnit Boonrod; Safa Hoodeshenas; Alexander D Weston; Pouria Rouzrokh; Gian Marco Conte; Atefeh Zeinoddini; David C Vogelsang; Qiao Huang; Bradley J Erickson
Journal:  Radiol Artif Intell       Date:  2020-09-30

8.  Deep Learning Based on ACR TI-RADS Can Improve the Differential Diagnosis of Thyroid Nodules.

Authors:  Ge-Ge Wu; Wen-Zhi Lv; Rui Yin; Jian-Wei Xu; Yu-Jing Yan; Rui-Xue Chen; Jia-Yu Wang; Bo Zhang; Xin-Wu Cui; Christoph F Dietrich
Journal:  Front Oncol       Date:  2021-04-27       Impact factor: 6.244

9.  Convolutional Neural Network to Stratify the Malignancy Risk of Thyroid Nodules: Diagnostic Performance Compared with the American College of Radiology Thyroid Imaging Reporting and Data System Implemented by Experienced Radiologists.

Authors:  G R Kim; E Lee; H R Kim; J H Yoon; V Y Park; J Y Kwak
Journal:  AJNR Am J Neuroradiol       Date:  2021-05-13       Impact factor: 4.966

Review 10.  Medical imaging and nuclear medicine: a Lancet Oncology Commission.

Authors:  Hedvig Hricak; May Abdel-Wahab; Rifat Atun; Miriam Mikhail Lette; Diana Paez; James A Brink; Lluís Donoso-Bach; Guy Frija; Monika Hierath; Ola Holmberg; Pek-Lan Khong; Jason S Lewis; Geraldine McGinty; Wim J G Oyen; Lawrence N Shulman; Zachary J Ward; Andrew M Scott
Journal:  Lancet Oncol       Date:  2021-03-04       Impact factor: 41.316

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